Wavelet packet-based insufficiency murmurs analysis method

Samjin Choi, Zhongwei Jiang
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引用次数: 3

Abstract

In this paper, the aortic and mitral insufficiency murmurs analysis method using the wavelet packet technique is proposed for classifying the valvular heart defects. Considering the different frequency distributions between the normal sound and insufficiency murmurs in frequency domain, we used two properties such as the relative wavelet energy and the Shannon wavelet entropy which described the energy information and the entropy information at the selected frequency band, respectively. Then, the signal to murmur ratio (SMR) measures which could mean the ratio between the frequency bands for normal heart sounds and for aortic and mitral insufficiency murmurs allocated to 15.62-187.50 Hz and 187.50-703.12 Hz respectively, were employed as a classification manner to identify insufficiency murmurs. The proposed measures were validated by some case studies. The 194 heart sound signals with 48 normal and 146 abnormal sound cases acquired from 6 healthy volunteers and 30 patients were tested. The normal sound signals recorded by applying a self-produced wireless electric stethoscope system to subjects with no history of other heart complications were used. Insufficiency murmurs were grouped into two valvular heart defects such as aortic insufficiency and mitral insufficiency. These murmur subjects included no other coexistent valvular defects. As a result, the proposed insufficiency murmurs detection method showed relatively very high classification efficiency. Therefore, the proposed heart sound classification method based on the wavelet packet was validated for the classification of valvular heart defects, especially insufficiency murmurs.
基于小波包的不足杂音分析方法
本文提出了一种基于小波包技术的主动脉瓣和二尖瓣功能不全杂音分析方法。考虑到正常声音和不足杂音在频域上的不同频率分布,利用相对小波能量和香农小波熵两个属性分别描述所选频带的能量信息和熵信息。然后,采用信号杂音比(SMR)指标,即正常心音频带与主动脉和二尖瓣不全杂音频带之比分别为15.62 ~ 187.50 Hz和187.50 ~ 703.12 Hz,作为识别不全杂音的分类方法。通过一些案例研究验证了所提出的措施的有效性。对6名健康志愿者和30例患者的194例心音信号进行了检测,其中48例正常,146例异常。使用自行研制的无线电听诊器系统对无其他心脏并发症病史的受试者记录正常的声音信号。不全杂音分为主动脉不全和二尖瓣不全两种瓣膜性心脏缺陷。这些杂音的主题包括没有其他同时代的瓣膜缺陷。结果表明,本文提出的不足杂音检测方法具有较高的分类效率。因此,拟议的心音分类方法基于小波包的验证分类的心脏瓣膜缺陷,尤其是不足杂音。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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